Modeling Spatio-Temporal Data: Markov Random Fields, Objective Bayes, and Multiscale Models
Editat de Marco A. R. Ferreiraen Limba Engleză Hardback – 29 noi 2024
Key topics:
- Proper Gaussian Markov random fields and their uses as building blocks for spatio-temporal models and multiscale models.
- Hierarchical models with intrinsic conditional autoregressive priors for spatial random effects, including reference priors, results on fast computations, and objective Bayes model selection.
- Objective priors for state-space models and a new approximate reference prior for a spatio-temporal model with dynamic spatio-temporal random effects.
- Spatio-temporal models based on proper Gaussian Markov random fields for Poisson observations.
- Dynamic multiscale spatio-temporal thresholding for spatial clustering and data compression.
- Multiscale spatio-temporal assimilation of computer model output and monitoring station data.
- Dynamic multiscale heteroscedastic multivariate spatio-temporal models.
- The M-open multiple optima paradox and some of its practical implications for multiscale modeling.
- Ensembles of dynamic multiscale spatio-temporal models for smooth spatio-temporal processes.
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Specificații
ISBN-13: 9781032622095
ISBN-10: 1032622091
Pagini: 298
Ilustrații: 120
Dimensiuni: 156 x 234 mm
Greutate: 0.7 kg
Ediția:1
Editura: CRC Press
Colecția Chapman and Hall/CRC
ISBN-10: 1032622091
Pagini: 298
Ilustrații: 120
Dimensiuni: 156 x 234 mm
Greutate: 0.7 kg
Ediția:1
Editura: CRC Press
Colecția Chapman and Hall/CRC
Public țintă
Academic and PostgraduateCuprins
1. Proper Gaussian Markov Random Fields. 2. Gaussian Spatial Hierarchical Models with ICAR Priors. 3. Objective Priors for Spatio-Temporal Models. 4. Spatio-Temporal Models for Poisson Areal Data. 5. Dynamic Multiscale Spatio-Temporal Thresholding. 6. Multiscale Spatio-Temporal Data Assimilation. 7. Multiscale Heteroscedastic Multivariate Spatio-Temporal Models. 8. A Model Selection Paradox with Implications to Multiscale Modeling. 9. Ensembles of Dynamic Multiscale Spatio-Temporal Models.
Notă biografică
Marco A. R. Ferreira is a Professor in the Department of Statistics at Virginia Tech. Marco has served the statistics profession in editorial boards of multiple scientific journals including the journal Bayesian Analysis, in several committees of the International Society for Bayesian Analysis and the American Statistical Association, as well as in scientific committees of numerous domestic and international conferences. Marco's current research areas include dynamic models for time series and spatiotemporal data, multiscale models, objective Bayesian methods, stochastic search algorithms, and statistical computation. Major areas of application include bioinformatics, economics, epidemiology, and environmental science. Marco's research has been funded by grants from industry, the National Science Foundation, and the National Institute of Health. Marco has published important scientific papers in top journals such as the Journal of the American Statistical Association, the Journal of the Royal Statistical Society, Biometrika, and Bayesian Analysis. At the time of this writing, Marco has advised over 15 Ph.D. students and postdocs who work in academic, industrial, and governmental positions.
Descriere
Several important topics in spatial and spatio-temporal statistics developed in the last 15 years have not received enough attention in textbooks. Aims to fill some of this gap by providing an overview of a variety of recently proposed approaches for the analysis of spatial and spatio-temporal datasets.